Abstract

Passive infrared motion sensors are commonly used in telemonitoring applications to monitor older community-dwelling adults at risk. One possible use case is quantification of in-home physical activity, a key factor and potential digital biomarker for healthy and independent aging. A major disadvantage of passive infrared sensors is their lack of performance and comparability in physical activity quantification. In this work, we calibrate passive infrared motion sensors for in-home physical activity quantification with simultaneously acquired data from wearable accelerometers and use the data to find a suitable correlation between in-home and out-of-home physical activity. We use data from 20 community-dwelling older adults that were simultaneously provided with wireless passive infrared motion sensors in their homes, and a wearable accelerometer for at least 60 days. We applied multiple calibration algorithms and evaluated results based on several statistical and clinical metrics. We found that using even relatively small amounts of wearable based ground-truth data over 7–14 days, passive infrared based wireless sensor systems can be calibrated to give largely better estimates of older adults' daily physical activity. This increase in performance translates directly to stronger correlations of measured physical activity levels with a variety of age relevant health indicators and outcomes known to be associated with physical activity.

Highlights

  • Population aging poses unprecedented global challenges to modern health care systems, economies and last but not least, society as a whole [1, 2]

  • We have previously shown that in-home physical activity, quantified by passive infrared (PIR) motion sensors can be used to approximate physical activity in old and oldest-old communitydwelling adults [26]

  • In terms of the learning algorithms used to approximate the activity calibration function fPIR, it is visible how Gaussian process regression (GPR) shows the best performance with little data up to 14 days

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Summary

Introduction

Population aging poses unprecedented global challenges to modern health care systems, economies and last but not least, society as a whole [1, 2]. Modern information and communication technology has the potential to contribute in overcoming some of these challenges [3,4,5]. Small sensing devices like smartwatches or smart home appliances may be used to provide continuous remote monitoring of relevant health indicators and outcomes [4], increasingly referred to as digital biomarkers [6,7,8]. These may allow for early detection of health deteriorations, enabling for instance better preventive measures or earlier interventions [9, 10].

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